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Multi GPU support for iw3 #59
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pytorch/pytorch#8637 |
the above problem was fixed by nagadomi/MiDaS_iw3@22193f4 , |
register_forward_hook problem was fixed by nagadomi/MiDaS_iw3@0da1ad0 nagadomi/ZoeDepth_iw3@55bacaf iw3 now works with multiple GPUs. updating stepsfor git, # update source code
git pull
# update MiDas and ZoeDepth
python -m iw3.download_models for windows_package, examplesCLI
GUI
I tested only 2 GPU case on Linux CLI. @elecimage |
oh Thank you. I'll test it soon |
yes it works but slower than 1 gpu use.~ |
@elecimage Here are some possible causes and questions,
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With 2 GPu's it is roughly 1.2x slower than with 1. I'm using two 2080ti. I've tried changing the Depth Batch Size several times, but it doesn't make much difference. |
OK, I will try to create a Windows VM on cloud and check the behavior. |
Maybe fixed by 2b7cbf9. |
oh Thank you. I'll test it soon |
I'm still having problems. |
When using multi GPUs, the batch size is divided for each GPU. So for the same batch size setting, each GPU's VRAM usage will be 1/GPU. In my test above, I tried the following settings. with 720x720 video, 1GPU = 2.5 FPS, 2GPU = 3.7 FPS.
GPU is Tesla T4 x2, T4 is the same generation architecture as RTX 2080ti and should have slightly worse performance. For reference, |
Recent Changes,
The issue of FPS not improving with multiple GPUs may be caused by Windows NVIDIA Driver mode (TCC/WDDM, seems to differ between Tesla Driver and GeForce Driver), so it may not be improved. |
and same result in the windows ,I'm pretty sure it has identified all the cards |
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all_cuda vs singal gpu |
Mutli-GPU DataParallel seems to be working (first screenshot of nvidia-smi). It may just slow. Also, you can monitor nvidia-smi with the following commands
or
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Turn off |
Try |
Try closing the application once and then try again (to avoid out of memory). Multi-GPU feature only supports depth estimation models, so if there are other bottlenecks, they will not be improved. Try low-resolution video as well. Also, when processing multiple videos, the following method is effective.
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I tried All CUDA in a Tesla T4 x 2 Linux environment.
multi gpu fps: 7.36 With Depth Anything(Any_B), the difference is even smaller.
multi gpu fps: 14.83 I have an idea about another multi-GPU strategy. |
Maybe it’s because Nvidia has cut some features from gaming graphics cards compared to professional cards. Anyway, I’m looking forward to your new multi-GPU strategy. |
I made this change. T4 x2 + Linux + 8 core (When tested above, it was 2 cores...)
Old code for comparison
Single GPU performance is also improved. On T4 x2 + Windows Server, |
it seems not work on my pc python -m iw3.cli -i /home/ohjoij/视频/fz.mkv -o /home/ohjoij/视频/test.mkv --gpu 0 1 --depth-model Any_B --zoed-batch-size 4 --max-workers 8 --yes ZoeD_N python -m iw3.cli -i /home/ohjoij/视频/fz.mkv -o /home/ohjoij/视频/test.mkv --gpu 0 1 --depth-model ZoeD_N --zoed-batch-size 4 --max-workers 8 --yes |
Maybe CPU or IO is the bottleneck and single GPU performance is higher compared to them. Is the single GPU performance of |
I changed part of #59 (comment) change to only enable it when |
ZoeD_N: Add --cuda-stream |
close efficent cores in 13600k, python -m iw3.cli -i /home/ohjoij/视频/fz.mkv -o /home/ohjoij/视频/test.mkv --gpu 0 1 --depth-model ZoeD_N --zoed-batch-size 4 --max-workers 8 --yes --cuda-stream fz.mkv: 100%|████████████████▉| 2230/2232 [03:13<00:00, 11.55it/s] |
I think the multi-GPU feature is working, but it is simply not efficient. |
OK,i see,thank you for your patient answer |
from #28 (comment)
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